Partial Identification of Treatment Effects with Implicit Generative
Models
- URL: http://arxiv.org/abs/2210.08139v1
- Date: Fri, 14 Oct 2022 22:18:00 GMT
- Title: Partial Identification of Treatment Effects with Implicit Generative
Models
- Authors: Vahid Balazadeh, Vasilis Syrgkanis, Rahul G. Krishnan
- Abstract summary: We propose a new method for partial identification of average treatment effects(ATEs) in general causal graphs using implicit generative models.
We prove that our algorithm converges to tight bounds on ATE in linear structural causal models.
- Score: 20.711877803169134
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: We consider the problem of partial identification, the estimation of bounds
on the treatment effects from observational data. Although studied using
discrete treatment variables or in specific causal graphs (e.g., instrumental
variables), partial identification has been recently explored using tools from
deep generative modeling. We propose a new method for partial identification of
average treatment effects(ATEs) in general causal graphs using implicit
generative models comprising continuous and discrete random variables. Since
ATE with continuous treatment is generally non-regular, we leverage the partial
derivatives of response functions to define a regular approximation of ATE, a
quantity we call uniform average treatment derivative (UATD). We prove that our
algorithm converges to tight bounds on ATE in linear structural causal models
(SCMs). For nonlinear SCMs, we empirically show that using UATD leads to
tighter and more stable bounds than methods that directly optimize the ATE.
Related papers
- Selective Inference for Time-Varying Effect Moderation [3.8233569758620063]
Causal effect moderation investigates how the effect of interventions (or treatments) on outcome variables changes based on observed characteristics of individuals.
High-dimensional analyses often lack interpretability, with important moderators masked by noise.
We propose a two-step method for selective inference on time-varying causal effect moderation.
arXiv Detail & Related papers (2024-11-24T16:37:48Z) - Conditionally-Conjugate Gaussian Process Factor Analysis for Spike Count Data via Data Augmentation [8.114880112033644]
Recently, GPFA has been extended to model spike count data.
We propose a conditionally-conjugate Gaussian process factor analysis (ccGPFA) resulting in both analytically and computationally tractable inference.
arXiv Detail & Related papers (2024-05-19T21:53:36Z) - Data-Driven Influence Functions for Optimization-Based Causal Inference [105.5385525290466]
We study a constructive algorithm that approximates Gateaux derivatives for statistical functionals by finite differencing.
We study the case where probability distributions are not known a priori but need to be estimated from data.
arXiv Detail & Related papers (2022-08-29T16:16:22Z) - MissDAG: Causal Discovery in the Presence of Missing Data with
Continuous Additive Noise Models [78.72682320019737]
We develop a general method, which we call MissDAG, to perform causal discovery from data with incomplete observations.
MissDAG maximizes the expected likelihood of the visible part of observations under the expectation-maximization framework.
We demonstrate the flexibility of MissDAG for incorporating various causal discovery algorithms and its efficacy through extensive simulations and real data experiments.
arXiv Detail & Related papers (2022-05-27T09:59:46Z) - Partial Identification with Noisy Covariates: A Robust Optimization
Approach [94.10051154390237]
Causal inference from observational datasets often relies on measuring and adjusting for covariates.
We show that this robust optimization approach can extend a wide range of causal adjustment methods to perform partial identification.
Across synthetic and real datasets, we find that this approach provides ATE bounds with a higher coverage probability than existing methods.
arXiv Detail & Related papers (2022-02-22T04:24:26Z) - Estimation of Bivariate Structural Causal Models by Variational Gaussian
Process Regression Under Likelihoods Parametrised by Normalising Flows [74.85071867225533]
Causal mechanisms can be described by structural causal models.
One major drawback of state-of-the-art artificial intelligence is its lack of explainability.
arXiv Detail & Related papers (2021-09-06T14:52:58Z) - Identifiable Energy-based Representations: An Application to Estimating
Heterogeneous Causal Effects [83.66276516095665]
Conditional average treatment effects (CATEs) allow us to understand the effect heterogeneity across a large population of individuals.
Typical CATE learners assume all confounding variables are measured in order for the CATE to be identifiable.
We propose an energy-based model (EBM) that learns a low-dimensional representation of the variables by employing a noise contrastive loss function.
arXiv Detail & Related papers (2021-08-06T10:39:49Z) - Graph Intervention Networks for Causal Effect Estimation [30.516184324213874]
We address the estimation of conditional average treatment effects (CATEs) when treatments are graph-structured.
We propose a plug-in estimator that decomposes CATE estimation into separate, simpler optimization problems.
arXiv Detail & Related papers (2021-06-03T15:41:00Z) - Efficient Causal Inference from Combined Observational and
Interventional Data through Causal Reductions [68.6505592770171]
Unobserved confounding is one of the main challenges when estimating causal effects.
We propose a novel causal reduction method that replaces an arbitrary number of possibly high-dimensional latent confounders.
We propose a learning algorithm to estimate the parameterized reduced model jointly from observational and interventional data.
arXiv Detail & Related papers (2021-03-08T14:29:07Z) - Estimation of Structural Causal Model via Sparsely Mixing Independent
Component Analysis [4.7210697296108926]
We propose a new estimation method for a linear DAG model with non-Gaussian noises.
The proposed method enables us to estimate the causal order and the parameters simultaneously.
Numerical experiments show that the proposed method outperforms existing methods.
arXiv Detail & Related papers (2020-09-07T13:08:10Z) - A Class of Algorithms for General Instrumental Variable Models [29.558215059892206]
Causal treatment effect estimation is a key problem that arises in a variety of real-world settings.
We provide a method for causal effect bounding in continuous distributions.
arXiv Detail & Related papers (2020-06-11T12:32:24Z)
This list is automatically generated from the titles and abstracts of the papers in this site.
This site does not guarantee the quality of this site (including all information) and is not responsible for any consequences.